Neuroimaging of epilepsy laboratory, McConnell Brain Imaging Center, Montreal Neurological Institute and Hospital, McGill University, Montreal, Quebec, Canada.
Neuroimage. 2012 Feb 15;59(4):3178-86. doi: 10.1016/j.neuroimage.2011.11.040. Epub 2011 Nov 25.
In drug-resistant temporal lobe epilepsy (TLE), detecting hippocampal atrophy on MRI is important as it allows defining the surgical target. The performance of automatic segmentation in TLE has so far been considered unsatisfactory. In addition to atrophy, about 40% of patients present with developmental abnormalities (referred to as malrotation) characterized by atypical morphologies of the hippocampus and collateral sulcus. Our purpose was to evaluate the impact of malrotation and atrophy on the performance of three state-of-the-art automated algorithms. We segmented the hippocampus in 66 patients and 35 sex- and age-matched healthy subjects using a region-growing algorithm constrained by anatomical priors (SACHA), a freely available atlas-based software (FreeSurfer) and a multi-atlas approach (ANIMAL-multi). To quantify malrotation, we generated 3D models from manual hippocampal labels and automatically extracted collateral sulci. The accuracy of automated techniques was evaluated relative to manual labeling using the Dice similarity index and surface-based shape mapping, for which we computed vertex-wise displacement vectors between automated and manual segmentations. We then correlated segmentation accuracy with malrotation features and atrophy. ANIMAL-multi demonstrated similar accuracy in patients and healthy controls (p > 0.1), whereas SACHA and FreeSurfer were less accurate in patients (p < 0.05). Surface-based analysis of contour accuracy revealed that SACHA over-estimated the lateral border of malrotated hippocampi (r = 0.61; p < 0.0001), but performed well in the presence of atrophy (|r |< 0.34; p > 0.2). Conversely, FreeSurfer and ANIMAL-multi were affected by both malrotation (FreeSurfer: r = 0.57; p = 0.02, ANIMAL-multi: r = 0.50; p = 0.05) and atrophy (FreeSurfer: r = 0.78, p < 0.0001, ANIMAL-multi: r = 0.61; p < 0.0001). Compared to manual volumetry, automated procedures underestimated the magnitude of atrophy (Cohen's d: manual: 1.68; ANIMAL-multi: 1.11; SACHA: 1.10; FreeSurfer: 0.90, p < 0.0001). In addition, they tended to lateralize the seizure focus less accurately in the presence of malrotation (manual: 64%; ANIMAL-multi: 55%, p = 0.4; SACHA: 50%, p = 0.1; FreeSurfer: 41%, p = 0.05). Hippocampal developmental anomalies and atrophy had a negative impact on the segmentation performance of three state-of-the-art automated methods. These shape variants should be taken into account when designing segmentation algorithms.
在耐药性颞叶癫痫(TLE)中,MRI 上检测海马萎缩很重要,因为它可以定义手术目标。迄今为止,自动分割在 TLE 中的性能一直被认为不理想。除了萎缩外,约 40%的患者存在发育异常(称为旋转不良),其特征为海马和侧副沟的典型形态。我们的目的是评估旋转不良和萎缩对三种最先进的自动算法性能的影响。我们使用基于区域生长的算法(SACHA)、免费可用的基于图谱的软件(FreeSurfer)和多图谱方法(ANIMAL-multi)对 66 名患者和 35 名性别和年龄匹配的健康受试者的海马体进行了分割。为了量化旋转不良,我们从手动海马体标签生成 3D 模型,并自动提取侧副沟。使用 Dice 相似性指数和基于表面的形状映射,相对于手动标记评估自动技术的准确性,对于后者,我们计算了自动分割和手动分割之间的顶点位移向量。然后,我们将分割准确性与旋转不良特征和萎缩相关联。ANIMAL-multi 在患者和健康对照组中的准确性相似(p > 0.1),而 SACHA 和 FreeSurfer 在患者中的准确性较低(p < 0.05)。基于表面的轮廓准确性分析表明,SACHA 高估了旋转不良的海马体的外侧边界(r = 0.61;p < 0.0001),但在存在萎缩时表现良好(|r |< 0.34;p > 0.2)。相反,FreeSurfer 和 ANIMAL-multi 受到旋转不良(FreeSurfer:r = 0.57;p = 0.02,ANIMAL-multi:r = 0.50;p = 0.05)和萎缩(FreeSurfer:r = 0.78,p < 0.0001,ANIMAL-multi:r = 0.61;p < 0.0001)的影响。与手动体积测量相比,自动程序低估了萎缩的程度(Cohen's d:手动:1.68;ANIMAL-multi:1.11;SACHA:1.10;FreeSurfer:0.90,p < 0.0001)。此外,在存在旋转不良时,它们往往不能更准确地侧向定位癫痫灶(手动:64%;ANIMAL-multi:55%,p = 0.4;SACHA:50%,p = 0.1;FreeSurfer:41%,p = 0.05)。海马体发育异常和萎缩对三种最先进的自动方法的分割性能有负面影响。在设计分割算法时应考虑这些形状变体。